Graph Your Own Prompt
–Neural Information Processing Systems
We propose Graph Consistency Regularization (GCR), a novel framework that injects relational graph structures, derived from model predictions, into the learning process to promote class-aware, semantically meaningful feature representations. Functioning as a form of, GCR enables the model to refine its internal structure using its own outputs. While deep networks learn rich representations, these often capture noisy inter-class similarities that contradict the model's predicted semantics.
Neural Information Processing Systems
Jun-11-2026, 14:04:23 GMT
- Technology: